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The Normal Law Under Linear Restrictions: Simulation and Estimation via
  Minimax Tilting

The Normal Law Under Linear Restrictions: Simulation and Estimation via Minimax Tilting

14 March 2016
Z. Botev
ArXiv (abs)PDFHTML

Papers citing "The Normal Law Under Linear Restrictions: Simulation and Estimation via Minimax Tilting"

50 / 51 papers shown
Title
Mixing times of data-augmentation Gibbs samplers for high-dimensional probit regression
Mixing times of data-augmentation Gibbs samplers for high-dimensional probit regression
Filippo Ascolani
Giacomo Zanella
119
0
0
20 May 2025
Exact MCMC for Intractable Proposals
Exact MCMC for Intractable Proposals
Dwija Kakkad
Dootika Vats
68
0
0
14 Oct 2024
Analysing symbolic data by pseudo-marginal methods
Analysing symbolic data by pseudo-marginal methods
Yu Yang
M. Quiroz
B. Beranger
Robert Kohn
Scott A. Sisson
55
0
0
08 Aug 2024
Scalable expectation propagation for generalized linear models
Scalable expectation propagation for generalized linear models
Niccolò Anceschi
A. Fasano
Beatrice Franzolini
Giovanni Rebaudo
91
0
0
02 Jul 2024
Scalable Sampling of Truncated Multivariate Normals Using Sequential
  Nearest-Neighbor Approximation
Scalable Sampling of Truncated Multivariate Normals Using Sequential Nearest-Neighbor Approximation
Jian Cao
Matthias Katzfuss
56
0
0
25 Jun 2024
Parallel Approximations for High-Dimensional Multivariate Normal
  Probability Computation in Confidence Region Detection Applications
Parallel Approximations for High-Dimensional Multivariate Normal Probability Computation in Confidence Region Detection Applications
Xiran Zhang
Sameh Abdulah
JIAN-PENG Cao
Hatem Ltaief
Ying Sun
M. Genton
David E. Keyes
40
1
0
18 May 2024
Efficiently Computable Safety Bounds for Gaussian Processes in Active
  Learning
Efficiently Computable Safety Bounds for Gaussian Processes in Active Learning
Jörn Tebbe
Christoph Zimmer
A. Steland
Markus Lange-Hegermann
Fabian Mies
GP
92
3
0
28 Feb 2024
Spectral gap bounds for reversible hybrid Gibbs chains
Spectral gap bounds for reversible hybrid Gibbs chains
Qian Qin
Nianqiao Ju
Guanyang Wang
83
5
0
20 Dec 2023
Linear-Cost Vecchia Approximation of Multivariate Normal Probabilities
Linear-Cost Vecchia Approximation of Multivariate Normal Probabilities
Jian Cao
Matthias Katzfuss
71
1
0
15 Nov 2023
An Easy Rejection Sampling Baseline via Gradient Refined Proposals
An Easy Rejection Sampling Baseline via Gradient Refined Proposals
Edward Raff
Mark McLean
James Holt
57
0
0
30 Sep 2023
Expectation propagation for the smoothing distribution in dynamic probit
Expectation propagation for the smoothing distribution in dynamic probit
Niccolò Anceschi
A. Fasano
Giovanni Rebaudo
62
0
0
04 Sep 2023
Characterizing Data Point Vulnerability via Average-Case Robustness
Characterizing Data Point Vulnerability via Average-Case Robustness
Tessa Han
Suraj Srinivas
Himabindu Lakkaraju
AAMLOOD
112
1
0
26 Jul 2023
Density Ratio Estimation-based Bayesian Optimization with Semi-Supervised Learning
Density Ratio Estimation-based Bayesian Optimization with Semi-Supervised Learning
Jungtaek Kim
86
1
0
24 May 2023
Utility Theory of Synthetic Data Generation
Utility Theory of Synthetic Data Generation
Shi Xu
W. Sun
Guang Cheng
174
5
0
17 May 2023
SOBER: Highly Parallel Bayesian Optimization and Bayesian Quadrature
  over Discrete and Mixed Spaces
SOBER: Highly Parallel Bayesian Optimization and Bayesian Quadrature over Discrete and Mixed Spaces
Masaki Adachi
Satoshi Hayakawa
Saad Hamid
Martin Jørgensen
Harald Oberhauser
Michael A. Osborne
88
7
0
27 Jan 2023
hdtg: An R package for high-dimensional truncated normal simulation
hdtg: An R package for high-dimensional truncated normal simulation
Zhenyu Zhang
A. Chin
A. Nishimura
M. Suchard
37
4
0
23 Sep 2022
An extension of the Unified Skew-Normal family of distributions and
  application to Bayesian binary regression
An extension of the Unified Skew-Normal family of distributions and application to Bayesian binary regression
P. Onorati
B. Liseo
84
3
0
07 Sep 2022
A Parallel Technique for Multi-objective Bayesian Global Optimization:
  Using a Batch Selection of Probability of Improvement
A Parallel Technique for Multi-objective Bayesian Global Optimization: Using a Batch Selection of Probability of Improvement
Kaifeng Yang
Guozhi Dong
M. Affenzeller
69
7
0
07 Aug 2022
On Controller Tuning with Time-Varying Bayesian Optimization
On Controller Tuning with Time-Varying Bayesian Optimization
Paul Brunzema
Alexander von Rohr
Sebastian Trimpe
79
17
0
22 Jul 2022
Bayesian Optimization Over Iterative Learners with Structured Responses:
  A Budget-aware Planning Approach
Bayesian Optimization Over Iterative Learners with Structured Responses: A Budget-aware Planning Approach
Syrine Belakaria
J. Doppa
Nicolò Fusi
Rishit Sheth
106
7
0
25 Jun 2022
Bayesian conjugacy in probit, tobit, multinomial probit and extensions:
  A review and new results
Bayesian conjugacy in probit, tobit, multinomial probit and extensions: A review and new results
Niccolò Anceschi
A. Fasano
Daniele Durante
Giacomo Zanella
85
18
0
16 Jun 2022
Semi-Parametric Contextual Bandits with Graph-Laplacian Regularization
Semi-Parametric Contextual Bandits with Graph-Laplacian Regularization
Y. Choi
Gi-Soo Kim
Seung-Jin Paik
M. Paik
64
6
0
17 May 2022
Efficient CDF Approximations for Normalizing Flows
Efficient CDF Approximations for Normalizing Flows
Chandramouli Shama Sastry
Andreas M. Lehrmann
Marcus A. Brubaker
A. Radovic
26
1
0
23 Feb 2022
Warped Dynamic Linear Models for Time Series of Counts
Warped Dynamic Linear Models for Time Series of Counts
Brian King
Daniel R. Kowal
AI4TS
126
5
0
27 Oct 2021
Approximation Methods for Mixed Models with Probit Link Functions
Approximation Methods for Mixed Models with Probit Link Functions
Benjamin Christoffersen
Mark Clements
Hedvig Kjellström
K. Humphreys
18
0
0
27 Oct 2021
Semiparametric discrete data regression with Monte Carlo inference and
  prediction
Semiparametric discrete data regression with Monte Carlo inference and prediction
Daniel R. Kowal
Bo-Hong Wu
126
3
0
23 Oct 2021
Bayesian inference on high-dimensional multivariate binary responses
Bayesian inference on high-dimensional multivariate binary responses
Antik Chakraborty
Rihui Ou
David B. Dunson
36
4
0
03 Jun 2021
Variational Inference for the Smoothing Distribution in Dynamic Probit
  Models
Variational Inference for the Smoothing Distribution in Dynamic Probit Models
A. Fasano
Giovanni Rebaudo
55
4
0
15 Apr 2021
A Hybrid Approximation to the Marginal Likelihood
A Hybrid Approximation to the Marginal Likelihood
Eric Chuu
D. Pati
A. Bhattacharya
44
2
0
24 Feb 2021
Asymptotically Exact and Fast Gaussian Copula Models for Imputation of
  Mixed Data Types
Asymptotically Exact and Fast Gaussian Copula Models for Imputation of Mixed Data Types
Benjamin Christoffersen
M. Clements
K. Humphreys
Hedvig Kjellström
70
3
0
04 Feb 2021
A unified framework for closed-form nonparametric regression,
  classification, preference and mixed problems with Skew Gaussian Processes
A unified framework for closed-form nonparametric regression, classification, preference and mixed problems with Skew Gaussian Processes
A. Benavoli
Dario Azzimonti
Dario Piga
67
15
0
12 Dec 2020
Scalable computation of predictive probabilities in probit models with
  Gaussian process priors
Scalable computation of predictive probabilities in probit models with Gaussian process priors
JIAN-PENG Cao
Daniele Durante
M. Genton
91
11
0
03 Sep 2020
A Class of Conjugate Priors for Multinomial Probit Models which Includes
  the Multivariate Normal One
A Class of Conjugate Priors for Multinomial Probit Models which Includes the Multivariate Normal One
A. Fasano
Daniele Durante
80
27
0
14 Jul 2020
A Survey of Constrained Gaussian Process Regression: Approaches and
  Implementation Challenges
A Survey of Constrained Gaussian Process Regression: Approaches and Implementation Challenges
L. Swiler
Mamikon A. Gulian
A. Frankel
Cosmin Safta
J. Jakeman
GPAI4CE
110
107
0
16 Jun 2020
Skew Gaussian Processes for Classification
Skew Gaussian Processes for Classification
A. Benavoli
Dario Azzimonti
Dario Piga
GP
63
19
0
26 May 2020
Interpretable Safety Validation for Autonomous Vehicles
Interpretable Safety Validation for Autonomous Vehicles
Anthony Corso
Mykel J. Kochenderfer
75
24
0
14 Apr 2020
Exploiting Low Rank Covariance Structures for Computing High-Dimensional
  Normal and Student-$t$ Probabilities
Exploiting Low Rank Covariance Structures for Computing High-Dimensional Normal and Student-ttt Probabilities
JIAN-PENG Cao
M. Genton
David E. Keyes
G. Turkiyyah
66
13
0
25 Mar 2020
Scalable and Accurate Variational Bayes for High-Dimensional Binary
  Regression Models
Scalable and Accurate Variational Bayes for High-Dimensional Binary Regression Models
A. Fasano
Daniele Durante
Giacomo Zanella
99
32
0
15 Nov 2019
Integrals over Gaussians under Linear Domain Constraints
Integrals over Gaussians under Linear Domain Constraints
A. Gessner
Oindrila Kanjilal
Philipp Hennig
69
30
0
21 Oct 2019
An Efficient Sampling Algorithm for Non-smooth Composite Potentials
An Efficient Sampling Algorithm for Non-smooth Composite Potentials
Wenlong Mou
Nicolas Flammarion
Martin J. Wainwright
Peter L. Bartlett
61
24
0
01 Oct 2019
Fast and Exact Simulation of Multivariate Normal and Wishart Random Variables with Box Constraints
Hillary Koch
Gregory P. Bopp
55
3
0
28 Jun 2019
Gaussian Process Modulated Cox Processes under Linear Inequality
  Constraints
Gaussian Process Modulated Cox Processes under Linear Inequality Constraints
A. F. López-Lopera
S. T. John
N. Durrande
85
16
0
28 Feb 2019
Approximating Gaussian Process Emulators with Linear Inequality
  Constraints and Noisy Observations via MC and MCMC
Approximating Gaussian Process Emulators with Linear Inequality Constraints and Noisy Observations via MC and MCMC
A. F. López-Lopera
François Bachoc
N. Durrande
Jérémy Rohmer
Déborah Idier
O. Roustant
32
12
0
15 Jan 2019
Gaussian processes with linear operator inequality constraints
Gaussian processes with linear operator inequality constraints
C. Agrell
83
39
0
10 Jan 2019
The Soft Multivariate Truncated Normal Distribution with Applications to
  Bayesian Constrained Estimation
The Soft Multivariate Truncated Normal Distribution with Applications to Bayesian Constrained Estimation
Allyson Souris
A. Bhattacharya
D. Pati
20
3
0
24 Jul 2018
Bayesian Metabolic Flux Analysis reveals intracellular flux couplings
Bayesian Metabolic Flux Analysis reveals intracellular flux couplings
Markus Heinonen
Maria Osmala
Henrik Mannerstrom
J. Wallenius
Samuel Kaski
Juho Rousu
Harri Lähdesmäki
40
22
0
18 Apr 2018
Conjugate Bayes for probit regression via unified skew-normal
  distributions
Conjugate Bayes for probit regression via unified skew-normal distributions
Daniele Durante
84
58
0
26 Feb 2018
Finite-dimensional Gaussian approximation with linear inequality
  constraints
Finite-dimensional Gaussian approximation with linear inequality constraints
A. F. López-Lopera
François Bachoc
N. Durrande
O. Roustant
140
67
0
20 Oct 2017
Bayesian Optimization with Shape Constraints
Bayesian Optimization with Shape Constraints
Michael Jauch
Víctor Pena
47
11
0
28 Dec 2016
Flexible Bayesian Quantile Regression in Ordinal Models
Flexible Bayesian Quantile Regression in Ordinal Models
M. A. Rahman
Shubham Karnawat
100
15
0
02 Sep 2016
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